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首页> 外文期刊>Thermal science >ARTIFICIAL NEURAL NETWORK APPROACH TO PREDICTING ENGINE-OUT EMISSIONS AND PERFORMANCE PARAMETERS OF A TURBO CHARGED DIESEL ENGINE
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ARTIFICIAL NEURAL NETWORK APPROACH TO PREDICTING ENGINE-OUT EMISSIONS AND PERFORMANCE PARAMETERS OF A TURBO CHARGED DIESEL ENGINE

机译:人工神经网络方法预测涡轮增压柴油机的发动机排放和性能参数

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摘要

This study details the artificial neural network (ANN) modelling of a diesel engine to predict the torque, power, brake-specific fuel consumption and pollutant emissions, including carbon dioxide, carbon monoxide, nitrogen oxides, total hydrocarbons and filter smoke number. To collect data for training and testing the neural network, experiments were performed on a four cylinder, four stroke compression ignition engine. A total of 108 test points were run on a dynamometer. For the first part of this work, a parameter packet was used as the inputs for the neural network, and satisfactory regression was found with the outputs (over ~95%), excluding total hydrocarbons. The second stage of this work addressed developing new networks with additional inputs for predicting the total hydrocarbons, and the regression was raised from 75 % to 90 %. This study shows that the ANN approach can be used for accurately predicting characteristic values of an internal combustion engine and that the neural network performance can be increased using additional related input data.
机译:这项研究详细介绍了柴油发动机的人工神经网络(ANN)建模,以预测扭矩,功率,特定于制动器的燃料消耗和污染物排放,包括二氧化碳,一氧化碳,氮氧化物,总碳氢化合物和过滤器烟尘量。为了收集用于训练和测试神经网络的数据,在四缸四冲程压缩点火发动机上进行了实验。测功机上总共运行了108个测试点。对于这项工作的第一部分,将参数包用作神经网络的输入,并且发现输出(不包括总烃)的满意回归(〜95%以上)。这项工作的第二阶段解决了开发新网络的问题,该网络具有用于预测总碳氢化合物的额外投入,并且回归从75%提高到90%。这项研究表明,可以将ANN方法用于准确预测内燃机的特征值,并且可以使用其他相关输入数据来提高神经网络的性能。

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